On parameter estimation in multi-parameter distributions

  • I.J.H. Visagie Statistics Department, University of Pretoria, South Africa. DST-NRF Centre of Excellence in Mathematical and Statistical Sciences (CoE-MaSS)
Keywords: Maximum likelihood estimator, empirical characteristic function estimator, Fourier inversion, normal inverse Gaussian distribution, Meixner distribution, log-returns.

Abstract

Many-multi parameter distributions have limit cases containing fewer parameters. This paper demonstrates that, when fitting distributions to data realized from a distribution resembling one of these limit cases, the parameter estimates obtained vary wildly between estimators. Special attention is paid to the modelling of financial log-returns. Two classes of estimators are used in order to illustrate the behaviour of the parameter estimates; the maximum likelihood estimator and the empirical characteristic function estimator. This paper discusses numerical problems associated with the maximum likelihood estimator for certain distributions and proposes a solution using Fourier inversion. In addition to simulation results, parameter estimates are obtained by fitting the normal inverse Gaussian and Meixner distributions to smooth bootstrap samples from the log-returns of the Dow Jones Industrial Average index are included as examples.

References

R. Cont, Empirical properties of asses returns: stylized facts and statistical issues, Quantitative Finance, 1:223–236. 2001.

A.C. Davison and D.V. Hinkley, Bootstrap methods and their application, Cambridge: Cambridge University Press. 1997.

W. Feller, An Introduction to Probability Theory and Its Applications, volume 2, London: John Wiley & Sons, Inc. 1971.

T.S. Ferguson, A Course in Large Sample Theory., London: CRC Press. 1996.

A. Feuerverger and R.A. Mureika, The empirical characteristic function and its applications, The Annals of Statistics, 5:88–97.1977.

A. Feuerverger and P. McDunnough, On some Fourier methods for inference, Journal of the American Statistical Association,76:379–387. 1981.

A. Feuerverger and P. McDunnough, On the efficiency of empirical characteristic function procedures, Journal of the RoyalStatistical Society: Series B, 43:20–27. 1981.

C.R. Heathcote, The integrated squared error estimation of parameters, Biometrika, 64:255–264. 1977.

E.L. Lehmann, Elements of Large Sample Theory, New York: Springer. 1999.

J.A. Nelder and R. Mead, A simplex method for function minimization, The Computer Journal, 7:308–313. 1965.

A.S. Paulson, E.W. Holcomb and R.A. Leitch, The estimation of the parameters of the stable laws, Biometrika, 62:163–170. 1975.

W. Schoutensm, Lévy Processes in Finance: Pricing Financial Derivatives, Chichester: John Wiley & Sons, Inc.

A.W. Van der Vaart, Asymptotic Statistics, Cambridge: Cambridge University Press. 1998.

J.H. Venter, P.J. de Jongh and G. Griebenow, NIG-GARCH models based on open, close, high and low prices, South African Statistical Journal, 39:79–101. 2005.

J. Wolfowitz, Estimation by the minimum distance method, The Annals of the Institute of Statistical Mathematics, 5:9–23. 1953.

J. Yu, Empirical characteristic function estimation and its applications, Econometric Reviews, 23:93-123. 2004.

Published
2018-08-19
How to Cite
Visagie, I. (2018). On parameter estimation in multi-parameter distributions. Statistics, Optimization & Information Computing, 6(3), 452-467. https://doi.org/10.19139/soic.v6i3.583
Section
Research Articles